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arbox/machine-learning-with-ruby: Curated list - GitHub
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Stream
Stream - Scalable APIs for Chat, Feeds, Moderation, & Video. Stream helps developers build engaging apps that scale to millions with performant and flexible Chat, Feeds, Moderation, and Video APIs and SDKs powered by a global edge network and enterprise-grade infrastructure.
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Ruby/Numo::NArray - GitHub
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Ruby/Numo (NUmerical MOdules) - GitHub
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rumale | RubyGems.org | your community gem host
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ankane/torch.rb: Deep learning for Ruby, powered by LibTorch - GitHub
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red-data-tools/red-chainer: A flexible framework for neural network for Ruby - GitHub
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ankane/torchaudio-ruby: An audio library for Torch.rb - GitHub
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InfluxDB
InfluxDB – Built for High-Performance Time Series Workloads. InfluxDB 3 OSS is now GA. Transform, enrich, and act on time series data directly in the database. Automate critical tasks and eliminate the need to move data externally. Download now.
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cfis/tensorflow-ruby: Ruby bindings for Tensorflow - GitHub
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ankane/tensorflow-ruby: Deep learning for Ruby - GitHub
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arbox/nlp-with-ruby: Curated List: Practical Natural Language Processing done in Ruby - GitHub
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Ruby Natural Language Processing Resources
A collection of links to Ruby Natural Language Processing (NLP) libraries, tools and software
A collection of links to Ruby Natural Language Processing (NLP) libraries, tools and software - GitHub
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State-of-the-art transformers for Ruby - GitHub
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yasutaka/pycall: Calling Python functions from the Ruby language - GitHub
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mrkn/pycall.rb: Calling Python functions from the Ruby language - GitHub
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Ruby FFI - GitHub
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A curated list of awesome pipeline toolkits inspired by Awesome Sysadmin - GitHub
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SaaSHub
SaaSHub - Software Alternatives and Reviews. SaaSHub helps you find the best software and product alternatives
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